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Robust signal reconstruction for condition monitoring of industrial components via a modified Auto Associative Kernel Regression method

机译:通过改进的自动关联核回归方法重建用于工业组件状态监测的鲁棒信号重建

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In this work, we propose a modification of the traditional Auto Associative Kernel Regression (AAKR) method which enhances the signal reconstruction robustness, i.e., the capability of reconstructing abnormal signals to the values expected in normal conditions. The modification is based on the definition of a new procedure for the computation of the similarity between the present measurements and the historical patterns used to perform the signal reconstructions. The underlying conjecture for this is that malfunctions causing variations of a small number of signals are more frequent than those causing variations of a large number of signals. The proposed method has been applied to real normal condition data collected in an industrial plant for energy production. Its performance has been verified considering synthetic and real malfunctioning. The obtained results show an improvement in the early detection of abnormal conditions and the correct identification of the signals responsible of triggering the detection.
机译:在这项工作中,我们提出了对传统自动联想核回归(AAKR)方法的修改,该方法增强了信号重建的鲁棒性,即将异常信号重建为正常情况下预期值的能力。该修改基于新过程的定义,该新过程用于计算当前测量值和用于执行信号重建的历史模式之间的相似度。对此的潜在推测是,引起少量信号变化的故障比引起大量信号变化的故障更为频繁。所提出的方法已经应用于在工厂中为能源生产而收集的真实正常状态数据。考虑到综合故障和实际故障,已经验证了其性能。所获得的结果显示出在异常情况的早期检测以及负责触发检测的信号的正确识别方面的改进。

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